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SuperSketch: A Multi-Dimensional Reversible Data Structure for Super Host Identification

Xuyang Jing, Hui Han, Zheng Yan, Witold Pedrycz

2021IEEE Transactions on Dependable and Secure Computing25 citationsDOIOpen Access PDF

Abstract

Facing big network traffic data, effective data compression becomes crucially important and urgently needed for estimating host cardinalities and identifying super hosts. However, the current literature confronts several challenges: incapability of simultaneously measuring various types of host cardinalities and inability to efficiently reconstruct super host addresses. To address these challenges, in this article, we propose a novel sketch data structure, named SuperSketch, to simultaneously measure multiple types of host cardinalities with the purpose of efficiently identifying super hosts. SuperSketch has two significant characteristics: multi-dimensionality and reversibility. The multi-dimensionality makes SuperSketch capable of simultaneously measuring Source Cardinality, Destination Cardinality, and Destination Port Cardinality. The reversibility allows SuperSketch to accurately and quickly reconstruct the original addresses of super hosts once they are identified. We conduct both theoretical analysis and performance evaluation based on real-world network traffic. Experimental results show that SuperSketch achieves outstanding performance for multi-cardinality measurement, super host identification, and host address reconstruction.

Topics & Concepts

Cardinality (data modeling)Computer scienceHost (biology)Identification (biology)Curse of dimensionalitySketchData miningTheoretical computer scienceAlgorithmArtificial intelligenceEcologyBiologyBotanyInternet Traffic Analysis and Secure E-votingNetwork Security and Intrusion DetectionSecurity in Wireless Sensor Networks
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